Quasi-linear interference cancellation for wireless communication

ABSTRACT

Techniques for performing interference cancellation in a wireless (e.g., CDMA) communication system are described. For a single-sector interference canceller, received samples are processed (e.g., despread) to isolate a signal from a transmitter (e.g., a base station) and obtain input samples. The input samples are transformed based on a first transform (e.g., a fast Hadamard transform) to obtain received symbols for multiple orthogonal channels (e.g., Walsh bins). The received symbols for the multiple orthogonal channels are scaled with multiple gains to obtain scaled symbols. The gains may be related to the inverses of the power estimates for the orthogonal channels. The scaled symbols are transformed based on a second transform (e.g., an inverse fast Hadamard transform) to obtain output samples, which are processed (e.g., spread) to obtain interference-canceled samples having the signal from the transmitter suppressed.

BACKGROUND

I. Field

The present disclosure relates generally to communication, and more specifically to techniques for performing interference cancellation in a wireless communication system.

II. Background

A wireless multiple-access communication system can concurrently communicate with multiple wireless devices, e.g., cellular phones. Examples of such multiple-access systems include code division multiple access (CDMA) systems, time division multiple access (TDMA) systems, and frequency division multiple access (FDMA) systems.

A wireless multiple-access system typically includes many base stations that provide communication coverage for a large geographic area. Each base station may transmit data to one or more wireless devices located within its coverage area at any given moment. A given wireless device may receive a desired transmission from a serving base station as well as interfering transmissions from nearby base stations. These interfering transmissions are intended for other wireless devices located within the coverage areas of these nearby base stations but act as interference to this given wireless device. The interference hinders the wireless device's ability to demodulate the desired transmission and has a large impact on performance.

There is therefore a need in the art for techniques to demodulate a desired transmission in the presence of interfering transmissions in a wireless communication system.

SUMMARY

Techniques for performing interference cancellation in a wireless communication system (e.g., a CDMA system) are described herein. As used herein, cancellation and suppression are synonymous terms and are used interchangeably. The techniques may improve performance for a wireless device. The techniques may also reduce the effects of interference, which may increase the capacity of an interference limited system such as a CDMA system.

In an embodiment of a single-sector interference canceller, received samples are processed (e.g., despreading) to isolate a signal from a transmitter (e.g., a base station for a sector) and obtain input samples. The input samples are transformed based on a first transform (e.g., a fast Hadamard transform) to obtain received symbols for multiple orthogonal channels (e.g., Walsh bins). The received symbols for the multiple orthogonal channels are scaled with multiple gains to obtain scaled symbols. The gains may be derived by (1) computing power estimates for the orthogonal channels based on the received symbols and (2) computing the gain for each orthogonal channel based on the inverse of the power estimate for that orthogonal channel. The scaled symbols are transformed based on a second transform (e.g., an inverse fast Hadamard transform) to obtain output samples. The output samples are processed (e.g., spread) to obtain interference-canceled samples having the signal from the transmitter suppressed.

In an embodiment of a parallel multi-sector interference canceller, at least one cancellation signal for at least one interfering transmitter is derived by isolating a signal from each interfering transmitter with a spreading code for that interfering transmitter. Each cancellation signal comprises the signal component for an interfering transmitter and may be obtained, e.g., by subtracting the interference-canceled samples for that interfering transmitter from the received samples. A signal estimate for a desired transmitter is derived based on the received signal and the at least one cancellation signal, e.g., by subtracting the cancellation signal(s) from the received signal. Multiple stages may be cascaded to improve interference cancellation performance, as described below.

In an embodiment of a cascaded multi-sector interference canceller, a first cancellation signal for a first transmitter is derived by isolating the signal from this transmitter with a spreading code for the transmitter. The first cancellation signal is subtracted from the received signal to obtain an intermediate signal. A second cancellation signal for a second transmitter is derived based on the intermediate signal. If the first transmitter is the desired transmitter, then a signal estimate for the desired transmitter may be obtained by subtracting the second cancellation signal from the received signal. If the desired transmitter is neither the first nor second transmitter, then the signal estimate for the desired transmitter may be obtained by subtracting the second cancellation signal from the intermediate signal. More than two stages may be cascaded, as described below.

Various aspects and embodiments of the invention are described in further detail below.

BRIEF DESCRIPTION OF THE DRAWINGS

The features and nature of the present invention will become more apparent from the detailed description set forth below when taken in conjunction with the drawings in which like reference characters identify correspondingly throughout.

FIG. 1 shows a CDMA system with multiple base stations.

FIG. 2 shows a block diagram of a base station and a wireless device.

FIG. 3 shows a CDMA modulator at the base station.

FIG. 4 shows a single-sector interference canceller.

FIG. 5 shows a single-sector interference canceller for multiple signal paths.

FIG. 6 shows a parallel multi-sector interference canceller.

FIG. 7A shows a cascaded two-sector interference canceller.

FIG. 7B shows a cascaded multi-sector interference canceller.

FIG. 8 shows a parallel two-stage interference canceller.

FIGS. 9A through 9D show four embodiments of a quasi-linear interference cancellation (QLIC) block.

FIG. 10A shows a signal path combiner.

FIG. 10B shows a signal path convolver.

FIG. 11 shows an interference canceller with processing per signal path.

FIG. 12 shows a two-stage interference canceller with processing per signal path.

FIG. 13 shows a generic quasi-linear interference canceller.

DETAILED DESCRIPTION

The word “exemplary” is used herein to mean “serving as an example, instance, or illustration.” Any embodiment or design described herein as “exemplary” is not necessarily to be construed as preferred or advantageous over other embodiments or designs.

The interference cancellation techniques described herein may be used for various communication systems such as CDMA, TDMA, FDMA, orthogonal frequency division multiple access (OFDMA), and single-carrier FDMA (SC-FDMA) systems. A CDMA system may implement one or more CDMA radio access technologies (RATs) such as cdma2000, Wideband-CDMA (W-CDMA), and so on. cdma2000 covers IS-2000, IS-856, and IS-95 standards. A TDMA system may implement a RAT such as GSM. These various RATs and standards are known in the art. W-CDMA and GSM are described in documents from a consortium named “3rd Generation Partnership Project” (3GPP). cdma2000 is described in documents from a consortium named “3rd Generation Partnership Project 2” (3GPP2). 3GPP and 3GPP2 documents are publicly available. An OFDMA system utilizes OFDM to transmit symbols in the frequency domain on orthogonal frequency subbands. An SC-FDMA system transmits symbols in the time domain on orthogonal frequency subbands. For clarity, the techniques are described below for a CDMA system, which may be cdma2000 system or a W-CDMA system.

FIG. 1 shows a CDMA system 100 with multiple base stations. For simplicity, FIG. 1 shows only three base stations 110 a, 110 b and 110 c and one wireless device 120. A base station is generally a fixed station that communicates with the wireless devices and may also be called a Node B (3GPP terminology), an access point, or some other terminology. Each base station 110 provides communication coverage for a particular geographic area. The term “cell” can refer to a base station and/or its coverage area depending on the context in which the term is used. To improve system capacity, the base station coverage area may be partitioned into multiple (e.g., three) smaller areas. Each smaller area is served by a respective base transceiver subsystem (BTS). The term “sector” can refer to a BTS and/or its coverage area depending on the context in which the term is used. For a sectorized cell, the BTSs for all sectors of that cell are typically co-located within the base station for the cell. The following description assumes that each cell is partitioned into multiple sectors. For simplicity, the term “base station” generically refers to a fixed station for a cell as well as a fixed station for a sector. A serving base station/sector is a base station/sector with which a wireless device communicates.

A wireless device may be fixed or mobile and may also be called a user equipment (UE) (3GPP terminology), a mobile station, a user terminal, or some other terminology. A wireless device may be a cellular phone, a personal digital assistant (PDA), a wireless modem card, and so on. A wireless device may communicate with zero, one, or multiple base stations on the forward link (or downlink) and reverse link (or uplink) at any given moment. For simplicity, FIG. 1 shows only transmissions on the forward link. Wireless device 120 receives a desired transmission from serving base station 110 a via line-of-sight and reflected paths and also receives interfering transmissions from neighbor base stations 110 b and 110 c via line-of-sight and reflected paths.

FIG. 2 shows a block diagram of a base station 110i and wireless device 120. Base station 110 i may be any one of the base stations shown in FIG. 1. For simplicity, FIG. 2 shows base station 110 i having one transmit antenna and wireless device 120 having one receive antenna. In general, base station 110 i and wireless device 120 may each be equipped with any number of antennas. For simplicity, FIG. 1 shows only the processing units for data transmission on the forward link.

At base station 110 i, a transmit (TX) data processor 210 receives traffic data for the wireless devices being served, processes (e.g., encodes, interleaves, and symbol maps) the traffic data to generate data symbols, and provides the data symbols to a CDMA modulator 220. As used herein, a data symbol is a modulation symbol for data, a pilot symbol is a modulation symbol for pilot, a modulation symbol is a complex value for a point in a signal constellation (e.g., for M-PSK, M-QAM, and so on), a symbol is a complex value, and pilot is data that is known a priori by both the base stations and the wireless devices. CDMA modulator 220 processes the data symbols and pilot symbols as described below and provides a stream of output chips to a transmitter unit (TMTR) 230. Transmitter unit 230 processes (e.g., converts to analog, amplifies, filters, and frequency upconverts) the output chip stream and generates a forward link signal, which is transmitted from an antenna 232.

At wireless device 120, an antenna 252 receives the forward link signals transmitted by base station 110 i as well as other base stations. Antenna 252 provides a received signal to a receiver unit (RCVR) 254. Receiver unit 254 processes (e.g., filters, amplifies, frequency downconverts, and digitizes) the received signal and provides received samples to an interference canceller 260. Interference canceller 260 estimates and suppresses the interference from interfering base stations as described below and provides interference-canceled samples for the serving base station to a rake receiver 270. Antenna 252 may receive the forward link signal from the serving base station via one or more signal paths as shown in FIG. 1, and the received signal may thus include one or more signal instances (or multipaths) for the serving base station. Rake receiver 270 processes all multipaths of interest and provides data symbol estimates, which are estimates of the data symbols sent by the serving base station. Rake receiver 270 may also be replaced with an equalizer or some other types of receiver. A receive (RX) data processor 280 processes (e.g., symbol demaps, deinterleaves, and decodes) the data symbol estimates and provides decoded data. In general, the processing by rake receiver 270 and RX data processor 280 is complementary to the processing by CDMA modulator 220 and TX data processor 210, respectively, at base station 110 i.

Controllers 240 and 290 direct operation of various processing units at base station 110 i and wireless device 120, respectively. Memories 242 and 292 store data and program codes for base station 110 i and wireless device 120, respectively.

For CDMA, multiple orthogonal channels may be obtained with different orthogonal codes. For example, multiple orthogonal traffic channels are obtained with different Walsh codes in cdma2000, and multiple orthogonal physical channels are obtained with different orthogonal variable spreading factor (OVSF) codes in W-CDMA. The orthogonal channels may be used to send different types of data (e.g., traffic data, broadcast data, control data, pilot, and so on) and/or traffic data for different wireless devices. The orthogonal channels are appropriately scaled, combined, and spectrally spread across the entire system bandwidth. The spectral spreading is performed with a spreading code, which is a pseudo-random number (PN) sequence in cdma2000 and a scrambling code in W-CDMA. For cdma2000, the channelization with Walsh codes is called “covering”, and the spectral spreading is called “spreading”. For W-CDMA, the channelization with OVSF codes is called “spreading”, and the spectral spreading is called “scrambling”. For clarity, cdma2000 terminology (e.g., traffic channel, covering, spreading, and so on) is used in the following description.

FIG. 3 shows a block diagram of CDMA modulator 220 within base station 110 i. For simplicity, the following description assumes that N traffic channels are available for each sector, and each traffic channel is assigned a different Walsh code of length N, where N may be equal to 4, 8, 16, 32, 64 or 128 for cdma2000. In general, orthogonal codes of different lengths may be used for the traffic channels, and N may correspond to the length of the longest orthogonal code.

CDMA modulator 220 includes N traffic channel processors 310 a through 310 n for the N traffic channels. Within each traffic channel processor 310, a multiplier 312 receives and scales the data symbols for traffic channel n with a gain g_(i,n) for traffic channel n and provides scaled data symbols. The gain g_(i,n) may be set to zero if traffic channel n is not used. A Walsh cover unit 314 channelizes the scaled data symbols with a Walsh code w_(n) assigned to traffic channel n. Unit 314 performs covering by repeating each scaled data symbol multiple times to generate N replicated symbols and then multiplying the N replicated symbols with the N chips of Walsh code w_(n) to generate N data chips for that data symbol. A combiner 320 receives and adds the data chips for all N traffic channels. A multiplier 322 multiplies the combined data chips with a spreading code assigned to sector i and generates output chips.

The output chips for sector i may be expressed in discrete time, as follows: $\begin{matrix} {{{x_{i}(k)} = {\sum\limits_{n = 1}^{N}{{c_{i}(k)} \cdot {w_{n}\left( {{mod}\left( {k,N} \right)} \right)} \cdot g_{i,n} \cdot {s_{i,n}\left( \left\lfloor {k/N} \right\rfloor \right)}}}},} & {{Eq}\quad(1)} \end{matrix}$ where k is an index for chip period;

-   -   n is an index for traffic channel;     -   i is an index for sector;     -   s_(i,n)(└k/N┘) is a data symbol sent in chip period k;     -   w_(i,n)(mod (k,N)) is a Walsh chip for chip period k;     -   g_(i,n) is the gain for traffic channel n in sector i;     -   c_(i)(k) is a spreading code chip for sector i in chip period k;         and     -   x_(i)(k) is an output chip for sector i in chip period k.         Each data symbol is sent in N chip periods, and data symbol         s_(i,n)(m) for symbol period m is sent in chip periods k=N·m         through N·m+N−1. Hence, m=└k/N┘ and s_(i,n)(m)=s_(i,n)(└k/N┘),         where “└x┘” denotes a floor operator. The data symbols, Walsh         chips, and spreading code chips are assumed to have unit         magnitude for all chip periods k, symbol periods m, and traffic         channels n, or |s_(i,n)(m)|=|w_(n)(mod(k,N))|=|c_(i)(k)|=1 for         ∀k,m,n. The spreading codes for different sectors are         uncorrelated, with E{c_(i)(k)·c*_(j)(k+κ)}=δ(κ)·δ(i,j), which         means that the expected value between the spreading codes for         sectors i and j is equal to one only if κ=0 and i=j. Different         sectors are assigned different shifted versions of the same PN         sequence in cdma2000, in which case the spreading codes for         different sectors are uncorrelated over a range of chip offsets.

Equation (1) may be expressed in matrix form, as follows: x _(i)(m)= C _(i)(m)· W·G _(i) ·s _(i)(m),   Eq (2) where

-   -   s _(i)(m))=[s_(i,1)(m) s_(i,2)(m) . . . s_(i,N)(m)]^(T) is an         N×1 vector containing N data symbols to be sent on the N traffic         channels in symbol period m, where “^(T)” denotes a transpose;     -   G _(i) is an N×N diagonal matrix containing the gains for the N         traffic channels, or diag (G _(i))={g_(i,1), g_(i,2), . . . ,         g_(i,N)};     -   W is an N×N Walsh matrix containing N Walsh codes in N columns;     -   C _(i)(m) is an N×N diagonal matrix containing N spreading code         chips for N chip periods in symbol period m, or diag (C         _(i)(m))={c_(i)(N·m), c_(i)(N·m+1), . . . , c_(i)(N·m+N−1)};and     -   x _(i)(m)=[x_(i)(N·m) x_(i)(N·m+1) . . . x_(i)(N·m+N−1)]^(T) is         an N×1 vector containing N output chips for sector i in symbol         period m.         A diagonal matrix contains possible non-zero values along the         diagonal and zeros elsewhere. If the traffic channels have         different Walsh code lengths, then N is equal to the longest         Walsh code length for all traffic channels, and each shorter         Walsh code is repeated in matrix W.

Wireless device 120 receives the forward link signals from base station 110 i and other base stations. The received samples from receiver unit 254 may be expressed as: $\begin{matrix} {{{\underset{\_}{r}(m)} = {{\sum\limits_{i}{\alpha_{i} \cdot {{\underset{\_}{x}}_{i}(m)}}} + {\underset{\_}{n}(m)}}},} & {{Eq}\quad(3)} \end{matrix}$ where α_(i) is a channel gain for sector i;

-   -   n(m) is an N×1 vector of noise and interference not included in         x _(i)(m); and     -   r(m) is an N×1 vector containing N received samples for symbol         period m.         Equation (3) assumes that all sectors are synchronized and that         there is a single signal path (i.e., no multipath) for each         sector. For simplicity, the noise and interference in n(m) may         be assumed to be additive white Gaussian noise (AWGN) with a         zero mean vector and a covariance matrix of N₀·I, where N₀ is         the variance of the noise and interference, and I is the         identity matrix with ones along the diagonal and zeros         elsewhere.

In equation (3), r(m) is a received vector for one symbol period. The received vectors for different symbol periods are uncorrelated due to the use of spreading codes that are temporally uncorrelated. Hence, there is no dependence across different symbol periods and, for clarity, index m is omitted in the following description.

Wireless device 120 may derive estimates of the data symbols transmitted by a given sector j on traffic channel n by (1) despreading the received samples with the spreading code used by sector j and (2) decovering the despread samples with the Walsh code for traffic channel n, as follows: {hacek over (s)} _(j,n) =w _(n) ^(T) ·C _(j) ^(H) r,   Eq (4) where

-   -   C _(i) is an N×N diagonal matrix containing the spreading code         chips for sector j, where “^(H)” denotes a conjugate transpose;     -   w _(n) is an N×1 vector containing the Walsh code for the         desired traffic channel n;     -   s_(j,n) is a data symbol sent by sector j on traffic channel n;         and     -   {hacek over (s)}_(j,n) is an estimate of s_(j,n) without         interference cancellation.

To cancel the interference from an interfering sector l, wireless device 120 may despread the received samples with the spreading code used by sector l and then decover the despread samples, as follows: u _(l) =W ^(T) ·C _(l) ^(H) ·r,   Eq (5) where u _(l) is an N×1 vector containing N received symbols for N Walsh bins for sector l. The multiplication by C _(l) ^(H) despreads the received samples for sector l, and the multiplication by W ^(T) generates received symbols for the N Walsh bins. The N Walsh bins are for N traffic channels if these traffic channels are assigned N different Walsh codes of length N. The N Walsh bins may be viewed as corresponding to N orthogonal channels obtained via the decovering with W ^(T).

A covariance matrix Λ _(l) for vector u _(l) may be expressed as: $\begin{matrix} \begin{matrix} {{\underset{\_}{\Lambda}}_{l} = {E\left\{ {{\underset{\_}{u}}_{l} \cdot {\underset{\_}{u}}_{l}^{H}} \right\}}} \\ {{= {{N^{2} \cdot {\alpha_{l}}^{2} \cdot {\underset{\_}{G}}_{l}^{2}} + {N \cdot \left( {{\sum\limits_{i \neq l}{\sum\limits_{n = 1}^{N}{{\alpha_{i}}^{2} \cdot g_{i,n}^{2}}}} + N_{0}} \right) \cdot \underset{\_}{I}}}},} \\ {{= {{q_{l} \cdot {\underset{\_}{G}}_{l}^{2}} + {\sigma^{2} \cdot \underset{\_}{I}}}},} \end{matrix} & {{Eq}\quad(6)} \end{matrix}$ where q_(l)=N²·|α_(l)|² is a channel power gain for sector l; and $\sigma^{2} = {N \cdot \left( {{\sum\limits_{i \neq l}{\sum\limits_{n = 1}^{N}{{\alpha_{i}}^{2} \cdot g_{i,n}^{2}}}} + N_{0}} \right)}$ is a total power gain for all other sectors. The covariance matrix Λ _(l) may be given as diag (Λ _(l))={λ_(l,1), λ_(l,2), . . . , λ_(l,N)}, where ${\lambda_{l,n} = {{N^{2} \cdot {\alpha_{l}}^{2} \cdot g_{l,n}^{2}} + {N \cdot \left( {{\sum\limits_{i \neq l}{\sum\limits_{n = 1}^{N}{{\alpha_{i}}^{2} \cdot g_{i,n}^{2}}}} + N_{0}} \right)}}},$ for n=1, . . . , N . The diagonal elements of Λ _(l) are measured powers (or eigenvalues) for the N Walsh bins. Λ _(l) is equi-diagonal if all N diagonal elements are equal, or λ_(l,n)=λ_(l) for ∀_(n).

Wireless device 120 may derive symbol estimates for traffic channel n of serving sector j based on various techniques such as a linear minimum mean square error (LMMSE) technique, a least squares (LS) technique, and so on. Symbol estimates for traffic channel n of sector j may be derived based on the LMMSE technique, as follows: $\begin{matrix} \begin{matrix} {{{\hat{\hat{s}}}_{j,n} = {{E\left( {\left. {s_{j,n}^{*} \cdot {\underset{\_}{u}}_{\quad l}} \middle| {\underset{\_}{C}}_{j} \right.,{\underset{\_}{C}}_{l}} \right)}^{H} \cdot {\underset{\_}{\Omega}}_{l}^{- 1} \cdot {\underset{\_}{u}}_{l}}},} \\ {{= {{E\left( {\left. {s_{j,n}^{*} \cdot \left( {{{{\underset{\_}{W}}^{T} \cdot {\underset{\_}{C}}_{l}^{H}}{\sum\limits_{i}{\alpha_{i} \cdot {\underset{\_}{C}}_{i} \cdot \underset{\_}{W} \cdot {\underset{\_}{G}}_{i} \cdot {\underset{\_}{s}}_{i}}}} + {{\underset{\_}{W}}^{T} \cdot {\underset{\_}{C}}_{l}^{H} \cdot \underset{\_}{n}}} \right)} \middle| {\underset{\_}{C}}_{j} \right.,{\underset{\_}{C}}_{l}} \right)}^{H} \cdot {\underset{\_}{\Lambda}}_{l}^{- 1} \cdot {\underset{\_}{u}}_{l}}},} \\ {= {\alpha_{j}^{*} \cdot g_{j,n} \cdot {\underset{\_}{w}}_{n}^{T} \cdot {\underset{\_}{C}}_{j}^{H} \cdot {\underset{\_}{C}}_{l} \cdot \underset{\_}{W} \cdot {\underset{\_}{\Lambda}}_{l}^{- 1} \cdot {{\underset{\_}{u}}_{l}.}}} \end{matrix} & {{Eq}\quad(7)} \end{matrix}$ where ${\hat{\hat{s}}}_{j,n}$ is an LMMSE estimate of s_(j,n).

The LMMSE symbol estimation in equation (7) may be combined with equation (5) and then broken into smaller equations, as follows: r _(l) =C _(l) ·W·Λ _(l) ⁻¹ W ^(T) ·C _(l) ^(H) ·r,   Eq (8) ŝ _(j,n) =w _(n) ^(T) ·C _(j) ^(H) ·r _(l), and Eq (9) $\begin{matrix} {{{\hat{\hat{s}}}_{j,n} = {\alpha_{j}^{*} \cdot g_{j,n} \cdot {\hat{s}}_{j,n}}},} & {{Eq}\quad(10)} \end{matrix}$ where

-   -   r _(l) is an N×1 vector containing N interference-canceled         samples having the signal component for sector l suppressed;     -   Λ _(l) ⁻¹ is an N×N diagonal matrix given as diag (Λ _(l)         ⁻¹)={λ_(l,1) ⁻¹, λ_(l,2) ⁻¹, . . . , λ_(l,N) ⁻¹}; ŝ_(j,n) is an         unweighted estimate of s_(j,n); and ${\hat{\hat{s}}}_{j,n}$         is a weighted estimate of s_(j,n).

Equation (8) represents interference cancellation for one interfering sector l. Equation (8) may be considered as including both linear operations (e.g., the transformations by W ^(T) and W) and non-linear operations (e.g., the despreading with C _(l) ^(H) and spreading with C _(l)). Equation (8) may thus be viewed as performing quasi-linear interference cancellation (QLIC) because the waveform is first multiplied by a time varying function (e.g. the despreading code), which is the same function as a component of the waveform (i.e., the multiplication term is itself a function of the received waveform). Vector r _(l) contains samples having the interference from sector l suppressed. Equation (9) indicates that the remaining LMMSE symbol estimation for s_(j,n) includes simple despread and decover operations that are conventionally done by a CDMA receiver, as shown in equation (4). In particular, vector r _(l) is despread with the spreading code for the desired sector j and then decovered with the Walsh code for the desired traffic channel n. Equation (10) shows the LMMSE scaling to obtain the weighted estimate for subsequent decoding.

As shown in equation (6), the diagonal elements of Λ _(l) are determined in part by the gain matrix G _(l) for interfering sector l. If the gains for all N traffic channels in sector t are equal (i.e., g_(l,n)=g_(l) for ∀n), then G _(l)=g_(l)·I and Λ _(l)=η·I, where η is an overall power gain. In this case, ${\underset{\_}{r}}_{l} = {\frac{1}{\eta}\underset{\_}{r}}$ and the unweighted symbol estimate ŝ_(j,n) from equation (9) is equal to the symbol estimate {hacek over (s)}_(j,n) from equation (4) without interference cancellation. Interference cancellation is achieved when the gains in matrix G _(l) are not equal, so that traffic channels with larger gains are attenuated more by the multiplication with the inverted covariance matrix Λ _(l) ⁻¹ in equation (8).

FIG. 4 shows a block diagram of a single-sector interference canceller 260 a, which is an embodiment of interference canceller 260 in FIG. 2. Within interference canceller 260 a, a multiplier 412 multiplies the received samples r with a complex-conjugated spreading code c*_(l) for sector l and provides input samples. A serial-to-parallel (S/P) converter 414 forms a vector of N input samples for each symbol period and provides the N input samples in parallel. A fast Hadamard transform (FHT) unit 416 performs an N-point FHT on the N input samples for each symbol period and provides N received symbols for N Walsh bins.

A unit 422 computes the squared magnitude of each received symbol from FHT unit 416. A filter 424 averages the squared magnitude of the received symbols for each Walsh bin and provides a power estimate {circumflex over (λ)}_(l,n) for that Walsh bin. Filter 424 provides an estimate of the diagonal elements of Λ _(l). Filter 424 may be implemented with a finite impulse response (FIR) filter, an infinite impulse response (IIR) filter, or some other type of filter. Filter 424 may have a time constant of, e.g., 32, 64, 128, or some other number of symbol periods. A unit 426 computes the inverse of the power estimate for each Walsh bin. A multiplier 440 obtains N received symbols for the N Walsh bins in each symbol period, multiplies the received symbol for each Walsh bin with the inverse power estimate for that Walsh bin, and provides N scaled symbols for the N Walsh bins. Units 422, 424, 426 and 440 perform processing on a per Walsh bin basis.

An inverse FHT (IFHT) unit 442 performs an N-point IFHT on the N scaled symbols for each symbol period and provides N output samples for that symbol period. A parallel-to-serial (P/S) converter 444 serializes the N output samples for each symbol period. A multiplier 446 multiplies the output samples with the spreading code for sector l and provides the interference-canceled samples r_(l).

In FIG. 4, multiplier 412 performs despreading for sector l, which is multiplication with C _(l) ^(H) in equation (8). Serial-to-parallel converter 414 vectorizes the input samples for each symbol period. FHT unit 416 performs decovering for the N traffic channels, which is multiplication with W ^(T) in equation (8). FHT unit 416 efficiently projects the vectorized samples into eigenmodes (or orthogonal channels) using Walsh codes and diagonalizes the covariance matrix Λ _(l). Unit 422, filter 424, and unit 426 derive an estimate of Λ _(l) ⁻¹. Multiplier 440 scales the N Walsh bins based on the inverses of the power estimates for these Walsh bins. Hence, Walsh bins with larger powers are attenuated more, which reduces the interference contribution from these Walsh bins. Multiplier 440 performs the multiplication with Λ _(l) ⁻¹ in equation (8). IFHT unit 442 performs covering for the N Walsh bins, which is multiplication with W in equation (8). Multiplier 446 performs spreading (or respreading) for sector l, which is multiplication with C _(l) in equation (8). The despreading by multiplier 412 and the spreading by multiplier 446 may be considered as non-linear operations because they are directly dependent upon a component of the received waveform. The decorrelation operations by units 416 through 442 for the LMMSE technique are linear operations.

FIG. 5 shows a block diagram of a single-sector interference canceller 260 b, which is another embodiment of interference canceller 260 in FIG. 2. Interference canceller 260 b may be used to suppress interference from multiple signal paths for sector l. These multiple signal paths may be (1) multipaths in a single received signal from a single receive antenna, (2) multiple received signals from multiple receive antennas, or (3) multipaths in multiple received signals.

Within interference canceller 260 b, in each chip period, a multiplier 512 receives a vector r′ containing P received samples for P signal paths, multiplies the received sample in each vector location with the complex-conjugated spreading code c*_(l) for sector l, and provides P input samples for P locations in r′. A serial-to-parallel converter 514 forms an N×P matrix of input samples in each symbol period. This matrix contains P columns for the P signal paths, with each column containing N input samples for one signal path. An FHT unit 516 performs an N-point FHT on each column of the N×P input sample matrix and provides an N×P matrix of received symbols. This received symbol matrix contains P columns for the P signal paths, with each column containing N received symbols for the N Walsh bins in one signal path.

Units 522 through 540 perform matrix-vector multiply of the received symbols on a per Walsh bin basis. Unit 522 forms N vectors with the N rows of the N×P received symbol matrix, with each vector containing P received symbols for the P signal paths for one Walsh bin. Unit 522 then computes an outer product of the received symbol vector for each Walsh bin and provides a P×P correlation matrix for that Walsh bin. Filter 524 filters the N correlation matrices for the N Walsh bins over multiple symbol periods and provides N P×P covariance matrices for the N Walsh bins. A unit 526 inverts each P×P covariance matrix. Multiplier 540 multiplies each row of the N×P received symbol matrix (which is a 1×P row vector for one Walsh bin) with the P×P inverted covariance matrix for that Walsh bin and provides a corresponding 1×P row vector of resultant symbols. Multiplier 540 provides an N×P matrix of resultant symbols in each symbol period.

An IFHT unit 542 performs an N-point IFHT on each column of the N×P scaled symbol matrix and provides an N×P matrix of output samples for that symbol period. A parallel-to-serial converter 544 serializes the N output samples for each symbol path and provides a vector of P output samples for the P signal paths in each chip period. A multiplier 546 multiplies the output samples for each signal path with the spreading code for sector l and provides the interference-canceled sample for that signal path. In each chip period, multiplier 546 provides a vector r′_(l) containing P interference-canceled samples for the P signal paths.

FIGS. 4 and 5 show interference cancellation for one interfering sector l. Interference from multiple sectors may also be estimated and canceled prior to demodulating a desired sector. A cancellation term e _(l) for each sector l may be defined as: $\begin{matrix} {{{\underset{\_}{e}}_{l} = {{\underset{\_}{r} - {\frac{1}{{tr}\left( {\underset{\_}{\Lambda}}_{l}^{- 1} \right)} \cdot {\underset{\_}{r}}_{l}}} = {\underset{\_}{r} - {\underset{\_}{\overset{\sim}{r}}}_{l}}}},} & {{Eq}\quad(11)} \end{matrix}$ where 1/tr (Λ _(l) ⁻¹) is a scaling factor for sector l; and {tilde over (r)} _(l) is a scaled version of r _(l). Vector e _(l) contains the signal component for sector l as well as distortion noise due to the σ² term in equation (6). Vector e _(l) represents an interference component for other sectors and is equal to zero if Λ _(l) is equi-diagonal. Vectorse _(l) for different sectors are uncorrelated due to the use of different spreading codes by different sectors. Vector e _(l) for an interfering sector l is also uncorrelated with transmitted vector x _(j) for a desired sector j, again due to the use of different spreading codes. The scaling factor 1/tr (Λ _(l) ⁻¹) results in optimal weighting of the interference contributions from different interfering sectors.

An estimate of the transmitted vector x _(j) for sector j may be expressed as: $\begin{matrix} {{{\underset{\_}{\hat{x}}}_{j} = {{\underset{\_}{r} - {\sum\limits_{l \neq j}^{\quad}{\underset{\_}{e}}_{l}}} = {\underset{\_}{r} - {\underset{\_}{e}}_{{os},j}}}},} & {{Eq}\quad(12)} \end{matrix}$ where {circumflex over (x)} _(j) is an estimate of x _(j) and e _(os,j) is the sum of the cancellation signals from the other sectors. Vector {circumflex over (x)} _(j) includes the signal component from sector j and has the interference components from other sectors canceled. Equations (11) and (12) maximize the signal-to-noise-and-interference ratio (SINR) for the estimation of {circumflex over (x)} _(j) under the assumption that the data symbols from each sector are independent and zero mean. The transmitted vector {circumflex over (x)} _(j) may be despread and decovered to obtain data symbol estimates for a desired traffic channel n from sector j, as follows: ŝ _(j,n) =w _(n) ^(T) ·C _(j) ^(H) ·{circumflex over (x)} _(j).   Eq (13)

FIG. 6 shows a block diagram of a parallel multi-sector interference canceller 260 c, which is another embodiment of interference canceller 260 in FIG. 2. Interference canceller 260 c performs interference cancellation for multiple (L) sectors and provides estimates of the signals transmitted by these L sectors.

Within interference canceller 260 c, the received signal r (which corresponds to the received samples from receiver unit 254) is provided to L QLIC blocks 610a through 6101 for the L sectors. Each QLIC block 610 derives a cancellation signal for its assigned sector and may be implemented as described below. A combiner 620 additively combines the cancellation signals e_(l) through e_(L) for all L sectors and provides a total cancellation signal e_(total). For each sector j, a summer 612 subtracts the cancellation signal e_(j) for that sector from the total cancellation signal e_(total) and provides an other-sector cancellation signal e_(os,j), which corresponds to the term $\sum\limits_{l \neq j}^{\quad}{\underset{\_}{e}}_{l}$ in equation (12). For each sector j, a summer 614 subtracts the other-sector cancellation signal e_(os,j) for that sector from the received signal r to obtain a signal estimate {circumflex over (x)}_(j) for that sector. The signal estimate {circumflex over (x)}_(j) for each sector has the cancellation signals from the other L−1 sectors removed. Summers 614 a through 6141 provide the signal estimates {circumflex over (x)}_(l) through {circumflex over (x)}_(L) for the L sectors to L finger processors 650 a through 6501, respectively, within rake receiver 270. Each finger processor 650 may perform demodulation as shown in equation (13) for its assigned sector.

FIG. 6 shows an embodiment of interference cancellation for multiple sectors in parallel. The cancellation signals for the L sectors are derived in parallel based on the received signal r. The accuracy of the cancellation signal for each sector is affected by the interference from all other sectors. The signal estimate {circumflex over (x)}_(j) for each sector is then derived based on the cancellation signal e_(j) for that sector, the total cancellation signal e_(total) for all L sectors, and the received signal r.

Interference cancellation for multiple sectors may also be performed in a successive manner, i.e., a sequential or cascaded manner. Successive interference cancellation for L sectors may be performed in L successive stages, with the interference from one sector being canceled in each stage. The interference cancellation at each stage may be performed based on the output from a preceding stage, which may have the interference from all prior stages removed and may thus be “cleaner” than the received signal. Successive interference cancellation may improve performance. For example, if different sectors cause different amounts of interference, then interference cancellation may first be performed for a strong sector lo suppress the signal component from this sector, and then performed for a weaker sector. The interference cancellation for the weaker sector may improve because the signal contribution from the strong sector has been attenuated. The cancellation of the strong sector reduces the a 2 term in equation (6) for the weaker sector, which makes the gain matrix for the weaker sector more prominent and improves the characteristics of Λ _(l) for the weaker sector. Hence, cancellation of the strong sector allows for better interference cancellation of the weaker sector.

FIG. 7A shows a block diagram of a cascaded two-sector interference canceller 260 d, which is yet another embodiment of interference canceller 260 in FIG. 2. For this embodiment, the signal component for a desired sector j is first canceled, and the interference from an interfering sector l is then canceled to generate a signal estimate for the desired sector.

Within interference canceller 260 d, the received signal r is provided to a QLIC block 710 a, which derives a cancellation signal e_(j) ¹ for the desired sector j. The superscript ‘1’ in e_(j) ¹ is for the stage number, and the subscript j is for the sector being processed by the stage. A summer 712 a subtracts the cancellation signal e_(j) ¹ from the received signal r and provides an intermediate signal r_(j) ¹ having the signal component and distortion noise for the desired sector suppressed. A QLIC block 710 b receives the intermediate signal r_(j) ¹ and derives a cancellation signal e_(l) ² for the interfering sector l. A summer 712 b subtracts the cancellation signal e_(l) ² from the received signal r and provides a signal estimate {circumflex over (x)}_(j) containing the signal component for the desired sector but having the interference from the interfering sector suppressed. A finger processor 650 j within rake receiver 270 performs demodulation on the signal estimate {circumflex over (x)}_(j) for the desired sector j.

FIG. 7B shows a block diagram of a cascaded multi-sector interference canceller 260 e, which is yet another embodiment of interference canceller 260 in FIG. 2. For this embodiment, the signal components for L sectors are successively suppressed in L stages.

Within interference canceller 260 e, the received signal r is provided to QLIC block 710 a, which derives a cancellation signal e¹ for the first sector. Summer 712 a subtracts the cancellation signal e¹ from the received signal r and provides an intermediate signal r¹ having the signal component for the first sector suppressed. QLIC block 710 b receives the intermediate signal r¹ and derives a cancellation signal e² for the second sector. A summer 712 b subtracts the cancellation signal e² from the intermediate signal r¹ and provides an intermediate signal r ² having the signal components for both the first and second sectors suppressed.

Each subsequent stage i operates in similar manner as stage 2. QLIC block 710 for stage i receives the intermediate signal r^(i−1) from prior stage i−1 and derives a cancellation signal e^(i) for sector i assigned to stage i. Summer 712 for stage i subtracts the cancellation signal e^(i) from the intermediate signal r^(i−1) generated by the prior stage and provides to the next stage an intermediate signal r^(i) having the signal components for all sectors assigned to the current and prior stages suppressed.

Summer 7121 for the last stage provides an intermediate signal r^(L) having the signal components from all L sectors suppressed. A summer 714 a adds the cancellation signal e ¹ for the first sector with the intermediate signal r^(L) and provides a signal estimate {circumflex over (x)}₁ for the first sector. A summer 714 b adds the cancellation signal e² for the second sector with the intermediate signal r^(L) and provides a signal estimate {circumflex over (x)}₂ for the second sector. Additional adders may be used to generate signal estimates for other sectors.

In an embodiment, the sectors are assigned to the stages based on their signal strength. For example, the strongest received sector may be assigned to stage 1, the next strongest received sector may be assigned to stage 2, and so on. In another embodiment, the sector with the earliest arriving signal may be assigned to stage 1, the sector with the next arriving signal may be assigned to stage 2, and so on. The sectors may also be assigned to the stages in other manners.

FIG. 8 shows a block diagram of a parallel two-stage interference canceller 260 f, which is yet another embodiment of interference canceller 260 in FIG. 2. Interference canceller 260 f is a combination of interference canceller 260 c in FIG. 6 and interference canceller 260 d in FIG. 7A.

For the first stage, the received signal r is provided to L QLIC blocks 810 a through 8101 for L sectors. Each QLIC block 810 derives a cancellation signal for its assigned sector based on the received signal. A combiner 820 additively combines the cancellation signals e_(l) ¹ through e_(L) ¹ from all L QLIC blocks 810 a through 8101 and provides a total cancellation signal e_(total) ¹ for the first stage. For each sector j, a summer 812 subtracts the cancellation signal e_(j) ¹ for that sector from the total cancellation signal e_(total) ¹ and provides an other-sector cancellation signal e_(os,j) ¹ for that sector. For each sector j, a summer 814 subtracts the other-sector cancellation signal e_(os,j) ¹ from the received signal r and provides an initial signal estimate {circumflex over (x)}_(j) ¹ for that sector. The initial signal estimate for each sector has the cancellation signals from the other L−1 sectors removed. Summers 814 a through 8141 provide the initial signal estimates {circumflex over (x)}_(l) ¹ through {circumflex over (x)}_(L) ¹ for the L sectors.

For the second stage, QLIC blocks 830 a through 8301 receive the initial signal estimates {circumflex over (x)}_(l) ¹ through {circumflex over (x)}_(L) ¹ from summers 814 a through 8141, respectively. Each QLIC block 830 derives a cancellation signal e_(j) ² for its assigned sector j based on its initial signal estimate {circumflex over (x)}_(j) ¹. For each sector j, the cancellation signal e_(j) ² from the second stage is typically a better estimate of the signal component for sector j than the cancellation signal e_(j) ¹ from the first stage because e_(j) ² is derived based on the initial signal estimate {circumflex over (x)}_(j) ¹ having the interference from the other L−1 sectors suppressed. A combiner 840 additively combines the cancellation signals e_(l) ² through e_(L) ² from all L QLIC blocks 830 a through 8301 and provides a total cancellation signal e_(total) ² for the second stage. For each sector j, a summer 832 subtracts the cancellation signal e_(j) ² for that sector from the total cancellation signal e_(total) ² and provides an other-sector cancellation signal e_(os,j) ² for the sector. For each sector j, a summer 834 subtracts the other-sector cancellation signal e_(os,j) ² from the received signal r and provides a final signal estimate {circumflex over (x)}_(j) for that sector. The final signal estimate {circumflex over (x)}_(j) for each sector has the signal components from the other L −1 sectors suppressed. Summers 834 a through 8341 provide the final signal estimates {circumflex over (x)}_(l) through {circumflex over (x)}_(L) for the L sectors to L finger processors 650 a through 6501, respectively, within rake receiver 270.

FIGS. 6 through 8 show some exemplary interference cancellers that perform interference cancellation for one or multiple sectors. Each QLIC block in FIGS. 6 through 8 may derive a cancellation signal for one signal path of one sector (per path processing), multiple signal paths of one sector (per sector processing), or multiple signal paths of multiple sectors (multi-sector processing). The multiple signal paths processed by a given QLIC block may be for one or multiple receive antennas. Other interference cancellers may also be designed based on the description provided herein. For example, the embodiment shown in FIG. 8 may be extended to include more than two cascaded interference cancellation stages.

FIG. 9A shows a block diagram of a QLIC block 910 a, which may be used for each QLIC block in interference cancellers 260 c through 260 f shown in FIGS. 6 through 8. QLIC block 910 a receives incoming samples and generates samples for a cancellation signal e_(l) for one sector l. For clarity, FIG. 9A shows QLIC block 910 a being used for the first stage, so that the incoming samples are the received samples for the received signal r. QLIC block 910 a does not perform resampling of the incoming samples and may be used in multi-sector interference cancellers 260 c through 260 f if the sectors are synchronized and the signals from these sectors are received at the wireless device aligned in time.

Within QLIC block 910 a, multiplier 412, serial-to-parallel converter 414, FHT unit 416, squared magnitude unit 422, filter 424, and inverse unit 426 operate as described above for FIG. 4. Inverse unit 426 provides N inverse power estimates, which are estimates of the diagonal elements of Λ _(l) ⁻¹. A summer 432 sums the N inverse power estimates and computes the trace of Λ _(l) ⁻¹. A unit 434 computes the inverse of the trace of Λ _(l) ⁻¹ and provides the scaling factor 1/tr (Λ _(l) ⁻¹). A multiplier 436 multiplies each of the N inverse power estimates from unit 426 with the scaling factor 1/tr (Λ _(l) ⁻¹). Multiplier 436 may also be located after multiplier 446, as indicated by equation (11). IFHT unit 442 , parallel-to-serial converter 444, and multiplier 446 operate as described above for FIG. 4. Multiplier 446 provides interference-canceled samples having the signal component and distortion noise for sector l attenuated based on the inverse covariance matrix Λ _(l) ⁻¹. A summer 448 subtracts the interference-canceled samples from the received samples and provides the cancellation samples e_(l) for sector l.

For the embodiment shown in FIG. 9A, the received samples r are temporarily stored until the corresponding samples from multiplier 446 are available. In another embodiment, summer 448 is located between multiplier 440 and IFHT unit 442, and appropriate scaling is performed to accommodate this move of summer 448. For this embodiment, summer 448 subtracts the output of multiplier 440 from the output of FHT unit 416 and provides its output to IFHT unit 442. This embodiment ameliorates the need to store the received samples and reduces buffering requirement.

FIG. 9B shows a block diagram of a QLIC block 910 b, which may also be used for each QLIC block in interference cancellers 260 c through 260 f. QLIC block 910 b generates samples for a cancellation signal e_(l) for one sector l based on the received samples. QLIC block 910 b includes units 512 through 526 and units 540 through 546 that operate as described above for FIG. 5. Unit 526 provides an estimate of Λ _(l) ⁻¹ for each Walsh bin. QLIC block 910 b further includes units 532, 534 and 536 that compute the proper weight for sector l. For each symbol period, unit 532 sums the estimates of Λ _(l) ⁻¹ for all N Walsh bins and provides an intermediate matrix. Unit 534 computes an inverse of the intermediate matrix and provides an intermediate matrix for sector l. Multiplier 536 multiplies the estimate of Λ _(l) ⁻¹ for each Walsh bin with the intermediate matrix and provides a gain matrix for that Walsh bin. The multiplication by multiplier 536 may also be moved, e.g., either before or after multiplier 546. Multiplier 540 multiplies the vector of received symbols for each Walsh bin with the gain matrix for that Walsh bin and provides a corresponding vector of resultant symbols.

FIG. 9C shows a block diagram of a QLIC block 910 c, which may also be used for each QLIC block in interference cancellers 260 c through 260 f. QLIC block 910 c generates samples for a cancellation signal e _(l) for one sector l based on the received samples. QLIC block 910 c performs resampling of the received samples to the proper chip timing and may be used in multi-sector interference cancellers 260 c through 260 f even if the sectors are unsynchronized and the signals from these sectors are received at the wireless device not aligned in time.

Within QLIC block 910 c, a unit 410 performs resampling (e.g., interpolation) on the received samples based on the timing of sector l to synchronize with chip timing. For example, unit 410 may obtain the received samples at twice the chip rate (or chip×2) and may generate interpolated samples at chip rate (or chip×1) and with the timing of sector l. The timing of sector l may be ascertained based on a pilot received from sector l and may be tracked with a time tracking loop, as is known in the art. Units 412 through 448 process the interpolated samples as described above for FIGS. 4 and 9A. Summer 448 provides samples that are aligned with the timing of sector l. An extrapolation unit 450 performs extrapolation on the samples from summer 448 and provides cancellation samples at the same rate and with the same timing as the received samples.

In FIGS. 6 through 8, each QLIC block may operate based on the timing of the sector assigned to that QLIC block. The extrapolation by unit 450 aligns the timing of the cancellation samples for all sectors so that these samples can be additively combined by combiners 620, 820 and 840.

FIG. 9D shows a block diagram of a QLIC block 910 d, which may also be used for each QLIC block in interference cancellers 260 c through 260 f. QLIC block 910 d generates samples for a cancellation signal e _(l) for one sector l based on the received samples. QLIC block 910 d can process multiple signal paths for sector l. These multiple signal paths may be multipaths for one receive antenna or multiple signal paths for multiple receive antennas.

QLIC block 910 d includes units 412 through 448 that operate as described above for FIGS. 4 and 9A. QLIC block 910 d further includes a signal path combiner 408 and a signal path convolver 452. Signal path combiner 408 performs additive weighted combining of the signal paths for sector l, e.g., to maximize the SINR of this sector. Signal path combiner 408 may be implemented with an equalizer, a pilot-weighted combiner, and so on. Signal path convolver 452 performs impulse response shaping to match the effective impulse response of sector l. The output from summer 448 is an estimate of the signal component for sector l. Signal path convolver 452 models the wireless channel between sector l and the wireless device. The outputs of signal path convolver 452 are cancellation signals for the individual signal paths of sector l. A combiner 454 combines the cancellation signals for all signal paths of sector l and provides the cancellation signal for sector l, which is an estimate of the interference observed at the wireless device from sector l.

FIG. 10A shows a block diagram of an embodiment of signal path combiner 408 in FIG. 9D. The received samples r are provided to P delay elements 1010 a through 1010 p for P signal paths for sector l, where P≧1. The signal paths may be identified by a searcher within rake receiver 270 based on a pilot received from sector l, as is known in the art. The timing and received signal quality for each signal path may also be ascertained based on the received pilot. Each delay element 1010 delays the received samples by the delay t_(p) for its assigned signal path. The delayed samples from all P delay elements 1010 a through 1010 p are aligned in time. Units 1012 a through 1012 p receive the delayed samples from delay elements 1010 a through 1010 p, respectively, and decimate these delayed samples to obtain decimated samples at chip rate. Multipliers 1014 a through 1014 p receive the decimated samples from units 1012 a through 1012 p, respectively, and the conjugated weights b*₁ through b*_(P), respectively, for the P signal paths. The weight for each signal path may be derived based on the channel gain, received signal strength, received signal quality, or some other metric for that signal path. Each multiplier 1014 scales the decimated samples for its assigned signal path with the weight for that signal path and provides scaled samples. A combiner 1016 combines the scaled samples for all P signal paths and provides composite samples r′ for sector l.

FIG. 10B shows a block diagram of an embodiment of signal path convolver 452. The samples from summer 448 in FIG. 9D are provided to P delay elements 1050 a through 1050 p for the P signal paths of sector l. Each delay element 1050 advances its samples by the delay of its assigned signal path. The delayed samples from all P delay elements 1050 a through 1050 p are aligned with the timing of the P signal paths. Filters 1052 a through 1052 p receive the delayed samples from delay elements 1050 a through 1050 p, respectively, and filter the delayed samples with the combined baseband filter response for the transmit and receive sides. Multipliers 1054 a through 1054 p receive the filtered samples from filters 1052 a through 1052 p, respectively, and the channel gains h₁ through h_(P), respectively, for the P signal paths. The channel gain for each signal path may be estimated based on the received pilot. Each multiplier 1054 scales the filtered samples for its assigned signal path with the channel gain for that signal path and provides cancellation samples for that signal path. Multipliers 1054 a through 1054 p provide P cancellation signals for the P signal paths of sector l.

For interference cancellers 260 c, 260 d, 260 e and 260 f in FIGS. 6, 7A, 7B and 8, respectively, each processing path from the received signal r to a finger processor 650 may be for a sector or a signal path of a sector. The processing paths may also be formed in other manners.

FIG. 11 shows a block diagram of an interference canceller 260 g, which is yet another embodiment of interference canceller 260 in FIG. 2. Interference canceller 260 g derives a cancellation signal for each sector but performs interference cancellation for the individual signal paths of each sector.

Canceller 260 g includes an interference estimator 1102, a combiner 1120, and a signal and interference combiner 1130 Within interference estimator 1102, the received signal r is provided to L signal path combiners 1108 a through 1108 l for L sectors. Each signal path combiner 1108 performs additive weighted combining of the signal paths for its assigned sector and provides a composite signal for that sector. Each signal path combiner 1108 may be implemented with signal path combiner 408 in FIG. 10A or with some other design. Signal path combiners 1108 a through 1108 1 may process the same number of (K) signal paths (as shown in FIG. 11) or different numbers of signal paths. Signal path combiners 1108 a through 11081 provide L composite signals r′¹ through r′_(L) for the L sectors to L QLIC blocks 1110 a through 1110 l, respectively. Each QLIC block 1110 derives a cancellation signal for its assigned sector based on its composite signal. Each QLIC block 1110 may be implemented with QLIC block 910 a, 910 b or 910 c or with some other QLIC design. QLIC blocks 1110 a through 1110 l provide L cancellation signals e₁ through e_(L) for the L sectors to L signal path convolvers 1112 a through 1112 l, respectively. Each signal path convolver 1112 performs impulse response shaping on the cancellation signal for its assigned sector and provides cancellation signals for the signal paths of that sector. Each signal path convolver 1112 may be implemented with signal path convolver 452 in FIG. 10B or with some other design. A combiner 1120 additively combines the cancellation signals for all signal paths of all L sectors from all L signal path convolvers 1112 a through 1112 l and provides a total cancellation signal e_(total).

Signal and interference combiner 1130 includes a pair of summers 1132 and 1134 for each signal path of each sector. For each signal path k of each sector j, a summer 1132 subtracts the cancellation signal e_(j,k) for that sector from the total cancellation signal e_(total) and provides an other-sector cancellation signal e_(os,j,k). For each signal path k of each sector j, a summer 1134 subtracts the other-sector cancellation signal e_(os,j,k) from the received signal r and provides a signal estimate {circumflex over (x)}_(j,k) for signal path k of sector j. Each signal estimate is processed by a respective finger processor 650 within rake receiver 270.

FIG. 12 shows a block diagram of a two-stage interference canceller 260 h, which is yet another embodiment of interference canceller 260 in FIG. 2. Interference canceller 260 h includes two stages. Each stage derives a cancellation signal for each sector but performs interference cancellation for individual signal paths of each sector.

For the first stage, the received signal r is provided to an interference estimator 1102 a, which may be implemented with interference estimator 1102 in FIG. 11. Interference estimator 1102 a derives cancellation signals for the signal paths of the L sectors. A combiner 1120 a additively combines the cancellation signals for the signal paths of all L sectors from interference estimator 1102 a and provides a total cancellation signal e_(total) ¹ for the first stage. A signal and interference combiner 1130 a, which may be implemented with signal and interference combiner 1130 in FIG. 11, derives initial signal estimates for the signal paths of all L sectors based on the received signal r, the cancellation signals from interference estimator 1102 a, and the total cancellation signal e_(total) ¹ from combiner 1120 a.

For the second stage, the initial signal estimates for the signal paths of all L sectors are provided to an interference estimator 1102 b, which may also be implemented with interference estimator 1102 in FIG. 11. Interference estimator 1102 b derives cancellation signals for the signal paths of the L sectors. The cancellation signals from the second stage are derived based on the initial signal estimates having the interference from the other sectors suppressed and are thus typically better estimates than the cancellation signals from the first stage. A combiner 1120 b additively combines the cancellation signals for the signal paths of all L sectors from interference estimator 1102 b and provides a total cancellation signal e_(total) ² for the second stage. A signal and interference combiner 1130 b derives final signal estimates for the signal paths of all L sectors based on the received signal r, the cancellation signals from interference estimator 1102 b, and the total cancellation signal e_(total) ² from combiner 1120 b.

For the embodiments shown in FIGS. 11 and 12, a cancellation signal is derived for each sector but the interference cancellation is performed for individual signal paths of each sector. Each processing path from the received signal r to a finger processor 650 in FIGS. 11 and 12 is for one signal path of one sector. However, the processing paths for all signal paths of each sector share the same QLIC block(s). The interference cancellation may also be performed in other manners.

For the embodiments shown in FIGS. 4, 5, and 9A through 9D, the size of the FHT and IFHT is determined by the longest Walsh code used for transmission, which may be 128 chips for cdma2000 and 512 chips for W-CDMA. The pilot may be transmitted with Walsh code 0 and using either fixed modulation or no modulation. In this case, the pilot Walsh code is theoretically infinite in duration. The pilot channel may be processed as a longer Walsh code (e.g., 4N) to improve the quality of the pilot estimate.

In an embodiment, the pilot processing may be performed as follows. For each symbol period m, an N-point FHT is performed on N input samples for symbol period m to obtain N received symbols for the N Walsh codes. Four received symbols obtained for the pilot Walsh code in four symbol periods, e.g., the current symbol period m and the three most recent symbol periods m−1, m−2 and m−3, may be transformed with a 4-point FHT to obtain four decovered symbols for four Walsh sub-bins of the pilot Walsh code. One Walsh sub-bin is for the pilot and the other three Walsh sub-bins are noise. N−1 received symbols obtained for the N−1 non-pilot Walsh codes in the current symbol period m and the four decovered symbols for the four pilot Walsh sub-bins (or a total of N+3 symbols) are then processed, e.g., by blocks 422, 424, 426 and 440 in FIG. 4, to obtain N+3 scaled symbols. A 4-point IFHT is then performed on the four scaled symbols for the four pilot Walsh sub-bins to obtain four covered symbols. The covered symbol for the Walsh sub-bin for the pilot is provided as the scaled symbol for the pilot Walsh code, and the covered symbols for the other three Walsh sub-bins are discarded. N scaled symbols for the N Walsh codes are then processed, e.g., by blocks 442, 444 and 446 in FIG. 4, to obtain the interference-canceled samples for the current symbol period m. The decovered symbol for the pilot Walsh sub-bin has a higher SNR due to the extra averaging, which may improve the interference cancellation.

FIG. 13 shows a block diagram of an embodiment of a generic quasi-linear interference canceller 260 g, which may be applicable for various communication systems. Received samples are initially obtained. These received samples may be in the time domain (e.g., for CDMA) or the frequency domain (e.g., for OFDM). The received samples are processed to isolate the signal from an interfering transmitter l (block 1312). The processing in block 1312 may be a non-linear operation such as despreading for cdma2000, descrambling for W-CDMA, and so on. Eigen-decomposition is then performed to obtain multiple eigenmodes or orthogonal channels for transmitter l (block 1316). Orthogonal channels are obtained with different Walsh codes for cdma2000 and with different OVSF codes for W-CDMA. Hence, the eigen-decomposition may be achieved with an FHT for cdma2000 and W-CDMA. Eigen-decomposition may be achieved with a fast Fourier transform (FFT) for OFDM and FDMA systems and with other types of transform for other systems.

Interference cancellation may be achieved by performing LMMSE scaling for each orthogonal channel. In this case, the power of each eigenmode for transmitter l is estimated (block 1322). The inverse of the power estimate for each orthogonal channel is computed (block 1326). Each orthogonal channel is then scaled by the inverse power estimate for that orthogonal channel, so that orthogonal channels with larger power estimates are attenuated more (block 1340). The orthogonal channels are then transformed back to discrete time using the inverse of the transform used for eigen-decomposition (block 1342). The processing to isolate transmitter l is then undone (block 1346). The processing in block 1346 may be a non-linear operation such as spreading for cdma2000, scrambling for W-CDMA, and so on.

A wireless device may maintain one or more sets of sectors such as (1) an active set containing sectors with which the wireless device is in communication, (2) a neighbor set containing sectors that are neighbors of the sectors in the active set, (3) a candidate set containing sectors that are strongly received by the wireless device and are candidates for inclusion in the active set, and/or (4) some other sector sets. The interference cancellation may be performed in various manners. In an embodiment, interference cancellation is performed for sectors that are in the active set. The wireless device typically receives these sectors strongly and further has timing and multipath information to effectively perform interference cancellation for these sectors. In another embodiment, interference cancellation is performed for as many sectors as possible based on the processing capability of the wireless device. The sectors may be selected for interference cancellation based on their received signal strength or some other criteria

The interference cancellation techniques described herein provide various advantages. First, the interference cancellation processing may be performed for one sector at a time and is a relatively simple form of interference cancellation. Second, the eigenmodes (which correspond to orthogonal traffic channels) for each sector may be efficiently obtained by performing FHT. Third, for some embodiments described above, the eigenvalues for the eigenmodes (which are power estimates used for the LMMSE interference cancellation) may be easily inverted without having to perform matrix inversion. Fourth, the interference cancellation is performed based on a low latency interference estimate for the sector being canceled, which is obtained by performing symbol processing. This is in contrast to an interference estimate obtained by decoding, re-encoding, and remodulating a frame or packet of data, which may be difficult or impractical to implement and has a higher latency because of the frame processing.

The techniques described herein may improve the overall system capacity on the forward link of a CDMA system. The capacity on the forward link is interference limited. That is, as the number of wireless devices communicating with the CDMA system increases, the total power transmitted to these wireless devices increases, which increases the interference observed by each wireless device. Eventually, the interference is such that no more wireless device can connect to the CDMA system. The techniques described herein reduce the deleterious effects of interference at the wireless device. Less transmit power may then be used for the wireless device to achieve the same level of performance, which reduces the interference to other wireless devices and allows more wireless devices to connect to the system.

The interference cancellation techniques described herein may be implemented by various means. For example, these techniques may be implemented in hardware, firmware, software, or a combination thereof. For a hardware implementation, the processing units used to perform interference cancellation may be implemented within one or more application specific integrated circuits (ASICs), digital signal processors (DSPs), digital signal processing devices (DSPDs), programmable logic devices (PLDs), field programmable gate arrays (FPGAs), processors, controllers, micro-controllers, microprocessors, electronic devices, other electronic units designed to perform the functions described herein, or a combination thereof.

For a software implementation, the interference cancellation techniques may be implemented with modules (e.g., procedures, functions, and so on) that perform the functions described herein. The software codes may be stored in a memory (e.g., memory 292 in FIG. 2) and executed by a processor (e.g., controller 290). The memory may be implemented within the processor or external to the processor.

The previous description of the disclosed embodiments is provided to enable any person skilled in the art to make or use the present invention. Various modifications to these embodiments will be readily apparent to those skilled in the art, and the generic principles defined herein may be applied to other embodiments without departing from the spirit or scope of the invention. Thus, the present invention is not intended to be limited to the embodiments shown herein but is to be accorded the widest scope consistent with the principles and novel features disclosed herein. 

1. An apparatus comprising: at least one processor operative to perform processing on received samples to isolate a signal from a transmitter and obtain input samples, to transform the input samples based on a first transform to obtain received symbols for multiple orthogonal channels, to scale the received symbols for the multiple orthogonal channels with multiple gains to obtain scaled symbols for the multiple orthogonal channels, and to transform the scaled symbols based on a second transform to obtain output samples having the signal from the transmitter suppressed, wherein the second transform is an inverse of the first transform; and a memory operative to store data for the at least one processor.
 2. The apparatus of claim 1, wherein the at least one processor is operative to despread the received samples based on a spreading code for the transmitter to obtain the input samples, and to spread the output samples based on the spreading code to obtain interference-canceled samples.
 3. The apparatus of claim 2, wherein the received samples are for a received CDMA signal, and wherein the spreading code is for a base station whose signal is suppressed in the interference-canceled samples.
 4. The apparatus of claim 1, wherein the at least one processor is operative to transform the input samples based on a fast Hadamard transform (FHT) and to transform the scaled symbols based on an inverse fast Hadamard transform (IFHT).
 5. The apparatus of claim 1, wherein the at least one processor is operative to derive power estimates for the multiple orthogonal channels and to derive the multiple gains based on the power estimates.
 6. The apparatus of claim 5, wherein the at least one processor is operative to compute square magnitude of the received symbols for the multiple orthogonal channels and to filter the square magnitude of the received symbols for each orthogonal channel to obtain a power estimate for the orthogonal channel.
 7. The apparatus of claim 1, wherein the at least one processor is operative to derive a gain for each orthogonal channel based on an inverse of a power estimate for the orthogonal channel and to scale the received symbols for each orthogonal channel based on the gain for the orthogonal channel.
 8. The apparatus of claim 1, wherein the at least one processor is operative to estimate covariance matrices based on the received symbols for the multiple orthogonal channels, to derive multiple matrices of gains based on the covariance matrices, and to multiply the received symbols for the multiple orthogonal channels with the multiple matrices of gains to obtain the scaled symbols for the multiple orthogonal channels.
 9. The apparatus of claim 1, wherein the at least one processor is operative to perform resampling based on timing of the transmitter prior to transforming the input samples, and to perform extrapolation based on the timing of the transmitter after transforming the scaled symbols.
 10. The apparatus of claim 1, wherein the at least one processor is operative to perform combining for a plurality of signal paths for the transmitter prior to transforming the input samples.
 11. The apparatus of claim 10, wherein the at least one processor is operative to delay the received samples with a plurality of delays for the plurality of signal paths, to scale delayed samples for the plurality of signal paths with a plurality of weights, and to combine scaled samples for the plurality of signal paths.
 12. The apparatus of claim 10, wherein the at least one processor is operative to perform processing for the plurality of signal paths after transforming the scaled symbols.
 13. The apparatus of claim 12, wherein the at least one processor is operative to spread the output samples with a spreading code to obtain spread samples, to delay the spread samples with a plurality of delays for the plurality of signal paths, to scale delayed samples for the plurality of signal paths with channel gain estimates for the plurality of signal paths, and to combine scaled samples for the plurality of signal paths.
 14. The apparatus of claim 2, wherein the at least one processor is operative to derive a cancellation signal based on the received samples and the interference-canceled samples.
 15. The apparatus of claim 14, wherein the at least one processor is operative to derive a scaling factor based on power estimates for the multiple orthogonal channels and to perform scaling based on the scaling factor.
 16. The apparatus of claim 14, wherein the at least one processor is operative to derive power estimates for the multiple orthogonal channels, to derive a scaling factor based on a sum of inverses of the power estimates, and to perform scaling based on the scaling factor.
 17. A method comprising: processing received samples to isolate a signal from a transmitter and obtain input samples; transforming the input samples based on a first transform to obtain received symbols for multiple orthogonal channels; scaling the received symbols for the multiple orthogonal channels with multiple gains to obtain scaled symbols for the multiple orthogonal channels; and transforming the scaled symbols based on a second transform to obtain output samples having the signal from the transmitter suppressed, wherein the second transform is an inverse of the first transform.
 18. The method of claim 17, further comprising: despreading the received samples based on a spreading code for the transmitter to obtain the input samples; and spreading the output samples based on the spreading code to obtain interference-canceled samples.
 19. The method of claim 17, further comprising: deriving power estimates for the multiple orthogonal channels; and deriving the multiple gains based on the power estimates.
 20. The method of claim 17, further comprising: performing resampling based on timing of the transmitter prior to transforming the input samples; and performing extrapolation based on the timing of the transmitter after transforming the scaled symbols.
 21. An apparatus comprising: means for processing received samples to isolate a signal from a transmitter and obtain input samples; means for transforming the input samples based on a first transform to obtain received symbols for multiple orthogonal channels; means for scaling the received symbols for the multiple orthogonal channels with multiple gains to obtain scaled symbols for the multiple orthogonal channels; and means for transforming the scaled symbols based on a second transform to obtain output samples having the signal from the transmitter suppressed, wherein the second transform is an inverse of the first transform.
 22. The apparatus of claim 21, wherein the means for processing the received samples comprises means for despreading the received samples based on a spreading code for the transmitter to obtain the input samples, and wherein the apparatus further comprises: means for spreading the output samples based on the spreading code to obtain interference-canceled samples.
 23. The apparatus of claim 21, further comprising: means for deriving power estimates for the multiple orthogonal channels; and means for deriving the multiple gains based on the power estimates.
 24. The apparatus of claim 21, further comprising: means for performing resampling based on timing of the transmitter prior to transforming the input samples; and means for performing extrapolation based on the timing of the transmitter after transforming the scaled symbols.
 25. An apparatus comprising: at least one processor operative to derive at least one cancellation signal for at least one interfering transmitter by isolating a signal from each interfering transmitter with a spreading code for the interfering transmitter, and to derive a signal estimate for a desired transmitter based on the received signal and the at least one cancellation signal for the at least one interfering transmitter, wherein each cancellation signal comprises signal component for a respective interfering transmitter, and wherein the signal estimate for the desired transmitter is an estimate of a signal transmitted by the desired transmitter; and a memory operative to store data for the at least one processor.
 26. The apparatus of claim 25, wherein to derive a cancellation signal for an interfering transmitter, the at least one processor is operative to perform despreading with the spreading code for the interfering transmitter to isolate the signal from the interfering transmitter.
 27. The apparatus of claim 25, wherein to derive a cancellation signal for an interfering transmitter, the at least one processor is operative to process a plurality of signal paths for the interfering transmitter to obtain a composite signal and to derive the cancellation signal for the interfering transmitter based on the composite signal.
 28. The apparatus of claim 25, the at least one processor is operative to convolve the cancellation signal for each interfering transmitter with at least one channel tap to obtain an output cancellation signal for the interfering transmitter, and to derive the signal estimate for the desired transmitter based on the received signal and at least one output cancellation signal for the at least one interfering transmitter.
 29. The apparatus of claim 25, wherein to derive a cancellation signal for an interfering transmitter, the at least one processor is operative to despread received samples based on the spreading code for the interfering transmitter to obtain input samples, to transform the input samples based on a first transform to obtain received symbols for multiple orthogonal channels of the interfering transmitter, to scale the received symbols for the multiple orthogonal channels with multiple gains to obtain scaled symbols for the multiple orthogonal channels, to transform the scaled symbols based on a second transform to obtain output samples, to spread the output samples based on the spreading code to obtain interference-canceled samples, and to subtract the interference-canceled samples from the received samples to obtain the cancellation signal for the interfering transmitter, wherein the second transform is an inverse of the first transform.
 30. The apparatus of claim 25, wherein for each interfering transmitter the at least one processor is operative to obtain power estimates for multiple orthogonal channels for the interfering transmitter, to derive a scaling factor based on the power estimates, and to derive the cancellation signal with the scaling factor.
 31. The apparatus of claim 25, wherein for each interfering transmitter the at least one processor is operative to obtain power estimates for multiple orthogonal channels for the interfering transmitter, to derive a gain for each of the multiple orthogonal channels based on an inverse of a power estimate for the orthogonal channel, to scale received symbols for each orthogonal channel with the gain for the orthogonal channel, and to derive the cancellation signal with scaled received symbols for the multiple orthogonal channels.
 32. The apparatus of claim 25, wherein for each interfering transmitter the at least one processor is operative to obtain power estimates for multiple orthogonal channels for the interfering transmitter, to derive a scaling factor based on a sum of inverses of the power estimates for the multiple orthogonal channels, to derive a gain for each of the multiple orthogonal channels based on the scaling factor and an inverse of a power estimate for the orthogonal channel, to scale received symbols for each orthogonal channel with the gain for the orthogonal channel, and to derive the cancellation signal with scaled received symbols for the multiple orthogonal channels.
 33. The apparatus of claim 25, wherein the at least one processor is operative to derive at least one intermediate signal for the at least one interfering transmitter based on the received signal and the at least one cancellation signal, to derive at least one improved cancellation signal for the at least one interfering transmitter based on the at least one intermediate signal, and to derive the signal estimate for the desired transmitter based on the received signal and the at least one improved cancellation signal, wherein the intermediate signal for each interfering transmitter has cancellation signals for other transmitters removed, and wherein each improved cancellation signal comprises signal component for a respective interfering transmitter.
 34. A method comprising: deriving at least one cancellation signal for at least one interfering transmitter by isolating a signal from each interfering transmitter with a spreading code for the interfering transmitter, wherein each cancellation signal comprises signal component for a respective interfering transmitter; and deriving a signal estimate for a desired transmitter based on the received signal and the at least one cancellation signal for the at least one interfering transmitter, wherein the signal estimate is an estimate of a signal transmitted by the desired transmitter.
 35. The method of claim 34, wherein the deriving the at least one cancellation signal for the at least one interfering transmitter comprises, for each interfering transmitter, performing despreading with a spreading code for the interfering transmitter to isolate a signal from the interfering transmitter.
 36. The method of claim 34, wherein the deriving the at least one cancellation signal for the at least one interfering transmitter comprises, for each interfering transmitter, processing a plurality of signal paths for the interfering transmitter to obtain a composite signal, and deriving the cancellation signal for the interfering transmitter based on the composite signal.
 37. The method of claim 34, wherein the deriving the at least one cancellation signal for the at least one interfering transmitter comprises, for each interfering transmitter, obtaining power estimates for multiple orthogonal channels for the interfering transmitter, deriving a scaling factor based on the power estimates, and deriving the cancellation signal with the scaling factor.
 38. An apparatus comprising: means for deriving at least one cancellation signal for at least one interfering transmitter by isolating a signal from each interfering transmitter with a spreading code for the interfering transmitter, wherein each cancellation signal comprises signal component for a respective interfering transmitter; and means for deriving a signal estimate for a desired transmitter based on the received signal and the at least one cancellation signal for the at least one interfering transmitter, wherein the signal estimate is an estimate of a signal transmitted by the desired transmitter.
 39. The apparatus of claim 38, wherein the means for deriving the at least one cancellation signal for the at least one interfering transmitter comprises, for each interfering transmitter, means for performing despreading with a spreading code for the interfering transmitter to isolate a signal from the interfering transmitter.
 40. The apparatus of claim 38, wherein the means for deriving the at least one cancellation signal for the at least one interfering transmitter comprises, for each interfering transmitter, means for processing a plurality of signal paths for the interfering transmitter to obtain a composite signal, and means for deriving the cancellation signal for the interfering transmitter based on the composite signal.
 41. The apparatus of claim 38, wherein the means for deriving the at least one cancellation signal for the at least one interfering transmitter comprises, for each interfering transmitter, means for obtaining power estimates for multiple orthogonal channels for the interfering transmitter, means for deriving a scaling factor based on the power estimates, and means for deriving the cancellation signal with the scaling factor.
 42. An apparatus comprising: at least one processor operative to derive a first cancellation signal for a first transmitter by isolating a signal from the first transmitter with a spreading code for the first transmitter, to subtract the first cancellation signal from the received signal to obtain an intermediate signal, to derive a second cancellation signal for a second transmitter based on the intermediate signal, and to derive a signal estimate for a desired transmitter based on the received signal, the intermediate signal, the first cancellation signal, the second cancellation signal, or a combination thereof, wherein the first cancellation signal comprises signal component for the first transmitter, and wherein the second cancellation signal comprises signal component for the second transmitter; and a memory operative to store data for the at least one processor.
 43. The apparatus of claim 42, wherein the first transmitter is the desired transmitter, and wherein the at least one processor is operative to subtract the second cancellation signal from the received signal to obtain the signal estimate for the desired transmitter.
 44. The apparatus of claim 42, wherein the at least one processor is operative to subtract the second cancellation signal from the intermediate signal to obtain the signal estimate for the desired transmitter.
 45. The apparatus of claim 42, wherein the at least one processor is operative to subtract the second cancellation signal from the intermediate signal to obtain a second intermediate signal, to derive a third cancellation signal for a third transmitter based on the second intermediate signal, and to derive the signal estimate for the desired transmitter based on the received signal, the intermediate signal, the second intermediate signal, the first cancellation signal, the second cancellation signal, the third cancellation signal, or a combination thereof, wherein the third cancellation signal comprises signal component for the third transmitter.
 46. The apparatus of claim 42, wherein to derive the first cancellation signal for the first transmitter, the at least one processor is operative to despread received samples based on a spreading code for the first transmitter to obtain input samples, to transform the input samples based on a first transform to obtain received symbols for multiple orthogonal channels of the first transmitter, to scale the received symbols for the multiple orthogonal channels with multiple gains to obtain scaled symbols for the multiple orthogonal channels, to transform the scaled symbols based on a second transform to obtain output samples, to spread the output samples based on the spreading code to obtain interference-canceled samples, and to subtract the interference-canceled samples from the received samples to obtain the first cancellation signal, wherein the second transform is an inverse of the first transform.
 47. A method comprising: deriving a first cancellation signal for a first transmitter by isolating a signal from the first transmitter with a spreading code for the first transmitter, wherein the first cancellation signal comprises signal component for the first transmitter; subtracting the first cancellation signal from the received signal to obtain an intermediate signal; deriving a second cancellation signal for a second transmitter based on the intermediate signal, wherein the second cancellation signal comprises signal component for the second transmitter; and deriving a signal estimate for a desired transmitter based on the received signal, the intermediate signal, the first cancellation signal, the second cancellation signal, or a combination thereof.
 48. The method of claim 47, wherein the deriving the signal estimate for the desired transmitter comprises subtracting the second cancellation signal from the received signal to obtain the signal estimate for the desired transmitter.
 49. The method of claim 47, wherein the deriving the signal estimate for the desired transmitter comprises subtracting the second cancellation signal from the intermediate signal to obtain the signal estimate for the desired transmitter.
 50. An apparatus comprising: means for deriving a first cancellation signal for a first transmitter by isolating a signal from the first transmitter with a spreading code for the first transmitter, wherein the first cancellation signal comprises signal component for the first transmitter; means for subtracting the first cancellation signal from the received signal to obtain an intermediate signal; means for deriving a second cancellation signal for a second transmitter based on the intermediate signal, wherein the second cancellation signal comprises signal component for the second transmitter; and means for deriving a signal estimate for a desired transmitter based on the received signal, the intermediate signal, the first cancellation signal, the second cancellation signal, or a combination thereof.
 51. The apparatus of claim 50, wherein the means for deriving the signal estimate for the desired transmitter comprises means for subtracting the second cancellation signal from the received signal to obtain the signal estimate for the desired transmitter.
 52. The apparatus of claim 50, wherein the means for deriving the signal estimate for the desired transmitter comprises means for subtracting the second cancellation signal from the intermediate signal to obtain the signal estimate for the desired transmitter.
 53. An apparatus comprising: at least one processor operative to process a received signal for at least two signal paths of a first transmitter to derive a first composite signal for the first transmitter, to derive a first cancellation signal for the first transmitter by isolating a signal from the first transmitter with a first spreading code for the first transmitter, to process the first cancellation signal for the at least two signal paths of the first transmitter to derive a first set of at least two cancellation signals for the at least two signal paths of the first transmitter, and to derive a first set of at least two signal estimates for the at least two signal paths of the first transmitter based on the first set of at least two cancellation signals and the received signal, wherein the first cancellation signal comprises signal component for the first transmitter; and a memory operative to store data for the at least one processor.
 54. The apparatus of claim 50, wherein the at least one processor is operative to process the received signal for at least two signal paths of a second transmitter to derive a second composite signal for the second transmitter, to derive a second cancellation signal for the second transmitter by isolating a signal from the second transmitter with a second spreading code for the second transmitter, to process the second cancellation signal for the at least two signal paths of the second transmitter to derive a second set of at least two cancellation signals for the at least two signal paths of the second transmitter, and to derive a second set of at least two signal estimates for the at least two signal paths of the second transmitter based on the second set of at least two cancellation signals and the received signal, and wherein the second cancellation signal comprises signal component for the second transmitter.
 55. The apparatus of claim 50, wherein the at least one processor is operative to process the first set of signal estimates for the at least two signal paths of the first transmitter to derive a second composite signal for the first transmitter, to derive a second cancellation signal for the first transmitter by isolating the signal from the first transmitter with the first spreading code for the first transmitter, to process the second cancellation signal for the at least two signal paths of the first transmitter to derive a second set of at least two cancellation signals for the at least two signal paths of the first transmitter, and to derive a second set of at least two signal estimates for the at least two signal paths of the first transmitter based on the second set of at least two cancellation signals and the received signal, and wherein the second cancellation signal comprises signal component for the first transmitter.
 56. An apparatus comprising: at least one processor operative to process received samples to isolate a signal from a transmitter and obtain input samples, to perform eigen-decomposition on the input samples to obtain received symbols for multiple eigenmodes for the transmitter, to scale the received symbols for the multiple eigenmodes with multiple gains to obtain scaled symbols for the multiple eigenmodes, and to transform the scaled symbols back to discrete time to obtain output samples having the signal from the transmitter suppressed; and a memory operative to store data for the at least one processor.
 57. The apparatus of claim 56, wherein the at least one processor is operative to despread the received samples with a spreading code for the transmitter to isolate the signal from the transmitter.
 58. The apparatus of claim 56, wherein the at least one processor is operative to perform eigen-decomposition with a fast Hadamard transform and to transform the scaled symbols with an inverse fast Hadamard transform. 